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Autonomous Navigation via Deep Reinforcement Learning for Resource Constraint Edge Nodes Using Transfer Learning

机译:使用传输学习的资源约束边缘节点的深度加强学习自主导航

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摘要

Smart and agile drones are fast becoming ubiquitous at the edge of the cloud. The usage of these drones is constrained by their limited power and compute capability. In this paper, we present a Transfer Learning (TL) based approach to reduce on-board computation required to train a deep neural network for autonomous navigation via value-based Deep Reinforcement Learning for a target algorithmic performance. A library of 3D realistic meta-environments is manually designed using Unreal Gaming Engine and the network is trained end-to-end. These trained meta-weights are then used as initializers to the network in a test environment and fine-tuned for the last few fully connected layers. Variation in drone dynamics and environmental characteristics is carried out to show robustness of the approach. Using NVIDIA GPU profiler, it was shown that the energy consumption and training latency is reduced by 3.7x and 1.8x respectively without significant degradation in the performance in terms of average distance traveled before crash i.e. Mean Safe Flight (MSF). The approach is also tested on a real environment using DJI Tello drone and similar results were reported. The code for the approach can be found on GitHub: https://github.com/aqeelanwar/DRLwithTL.
机译:智能和敏捷的无人机在云边缘易受普遍存在。这些无人机的用法受到其有限的功率和计算能力的限制。在本文中,我们提出了一种基于转移学习(TL)的方法,以降低培训深度神经网络以获得自主导航深度神经网络所需的板载计算,以实现目标算法性能。使用虚幻游戏引擎手动设计3D现实元环境库,网络训练结束于终端。然后将这些训练有素的元权重呈现为在测试环境中的网络中的初始化器,并为最后几个完全连接的层进行微调。进行了无人机动力学和环境特征的变化,以表达这种方法的鲁棒性。利用NVIDIA GPU分析器,表明,在崩溃前行进的平均距离方面,能量消耗和培训延迟分别减少了3.7倍和1.8倍,在平均距离中的平均距离方面的性能显着降低。平均安全飞行(MSF)。该方法还在使用DJI Tello无人机和类似的结果上进行了测试。该方法的代码可以在github上找到:https://github.com/aqeelanwar/drwithtl。

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